PET Rapid Image Reconstruction Challenge (PETRIC)
Casper da Costa-Luis, Matthias J. Ehrhardt, Christoph Kolbitsch, Evgueni Ovtchinnikov, Edoardo Pasca, Kris Thielemans, Charalampos Tsoumpas

TL;DR
PETRIC is the first challenge focused on reducing computational runtime in PET image reconstruction, providing open-source tools, datasets, and metrics for benchmarking algorithms.
Contribution
It establishes a standardized framework for evaluating PET reconstruction algorithms, fostering future research and development in the field.
Findings
Nine algorithms from four teams participated.
Algorithms utilized optimization, stochastic gradients, and AI.
Performance varied based on implementation details.
Abstract
Introduction: We describe the foundation of PETRIC, an image reconstruction challenge to minimise the computational runtime of related algorithms for Positron Emission Tomography (PET). Purpose: Although several similar challenges are well-established in the field of medical imaging, there have been no prior challenges for PET image reconstruction. Methods: Participants are provided with open-source software for implementation of their reconstruction algorithm(s). We define the objective function and reconstruct "gold standard" reference images, and provide metrics for quantifying algorithmic performance. We also received and curated phantom datasets (acquired with different scanners, radionuclides, and phantom types), which we further split into training and evaluation datasets. The automated computational framework of the challenge is released as open-source software. Results:…
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